让相位选择神经网络更一致、更易解读

Yongsoo Park, Brent Delbridge, David R. Shelly
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引用次数: 0

摘要

提高相位选取神经网络的可解释性仍是一项重要任务,以促进其在常规、实时地震监测中的应用。文献中发表的流行的相位选取神经网络缺乏可解释性,因为它们的输出预测分数并不一定与相位选取的可靠性相对应,甚至可能非常不一致,这取决于我们如何窗口化波形数据。在这里,我们展示了在训练过程中系统地移动波形以及在神经网络架构中使用抗锯齿滤波器可以大大提高输出预测分数的一致性,甚至可以使其与波形的信噪比成比例。我们将这些方法应用于常用的相位选取神经网络架构,并使用 2019 年里奇克雷斯特地震序列的波形数据来演示这些改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Making Phase-Picking Neural Networks More Consistent and Interpretable
Improving the interpretability of phase-picking neural networks remains an important task to facilitate their deployment to routine, real-time seismic monitoring. The popular phase-picking neural networks published in the literature lack interpretability because their output prediction scores do not necessarily correspond with the reliability of phase picks and can even be highly inconsistent depending on how we window the waveform data. Here, we show that systematically shifting the waveforms during training and using an antialiasing filter within the neural network architecture can substantially improve the consistency of the output prediction scores and can even make them scale with the signal-to-noise ratios of the waveforms. We demonstrate the improvements by applying these approaches to a commonly used phase-picking neural network architecture and using waveform data from the 2019 Ridgecrest earthquake sequence.
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